Data Engineer Snowflake

Adria Solutions
Brighton
3 days ago
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Data Engineer (Snowflake)

We are seeking an experienced Data Engineer (Snowflake) to join our clients team on a permanent basis. This role will focus on administering and developing our Snowflake data platform, building robust data pipelines, and transforming data to support analytics and marketing activation use cases.

The successful candidate will initially work on projects involving the ingestion of multiple data sources - including Google Analytics 4 (GA4) - and transforming data to surface insights within Google Ads.

Key Responsibilities

  • Administer, maintain, and optimise the Snowflake data platform
  • Design, build, and manage scalable ETL/ELT data pipelines
  • Ingest and integrate 3–4 data sources, including GA4
  • Transform and model data to support reporting and activation in Google Ads
  • Ensure data quality, performance, and cost efficiency
  • Collaborate with analytics, marketing, and engineering teams
  • Document data solutions and provide ongoing platform support

Required Skills & Experience

  • Strong hands-on experience with Snowflake
  • Proven experience building data pipelines in a cloud environment
  • Advanced SQL skills and experience with data modelling
  • Experience working with GA4 or digital analytics data
  • Experience integrating data with Google Ads or similar platforms
  • Familiarity with cloud platforms (GCP, AWS, or Az...

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